Skip to content
Projects
Groups
Snippets
Help
Loading...
Help
Support
Keyboard shortcuts
?
Submit feedback
Contribute to GitLab
Sign in / Register
Toggle navigation
W
wendelin.core
Project overview
Project overview
Details
Activity
Releases
Repository
Repository
Files
Commits
Branches
Tags
Contributors
Graph
Compare
Labels
Merge Requests
0
Merge Requests
0
Analytics
Analytics
Repository
Value Stream
Members
Members
Collapse sidebar
Close sidebar
Activity
Graph
Commits
Open sidebar
Kirill Smelkov
wendelin.core
Commits
c4b66f7d
Commit
c4b66f7d
authored
Oct 29, 2018
by
Kirill Smelkov
Browse files
Options
Browse Files
Download
Email Patches
Plain Diff
.
parent
fd647f2b
Changes
2
Hide whitespace changes
Inline
Side-by-side
Showing
2 changed files
with
63 additions
and
62 deletions
+63
-62
bigarray/__init__.py
bigarray/__init__.py
+2
-24
lib/xnumpy.py
lib/xnumpy.py
+61
-38
No files found.
bigarray/__init__.py
View file @
c4b66f7d
...
...
@@ -38,8 +38,8 @@ of physical RAM.
from
__future__
import
print_function
from
wendelin.lib.calc
import
mul
from
wendelin.lib.xnumpy
import
_as_strided
from
numpy
import
ndarray
,
dtype
,
sign
,
newaxis
,
asarray
,
argmax
,
uint8
from
numpy.lib.stride_tricks
import
DummyArray
import
logging
...
...
@@ -618,29 +618,7 @@ class ArrayRef(object):
#
# it is also safe because we checked .shape and .stridev not to escape
# from bchild data buffer.
#
# the code below is very close to
#
# a = stride_tricks.as_strided(bchild_z0, shape=self.shape, strides=self.stridev)
#
# but we don't use as_strided() because we also have to change dtype
# with shape and strides in one go - else changing dtype after either
# via a.dtype = ..., or via a.view(dtype=...) can raise errors like
#
# "When changing to a larger dtype, its size must be a
# divisor of the total size in bytes of the last axis
# of the array."
aiface
=
dict
(
bchild_z0
.
__array_interface__
)
aiface
[
'shape'
]
=
tuple
(
self
.
shape
)
aiface
[
'strides'
]
=
tuple
(
self
.
stridev
)
# type: for now we only care that itemsize is the same
aiface
[
'typestr'
]
=
'|V%d'
%
self
.
dtype
.
itemsize
aiface
[
'descr'
]
=
[(
''
,
aiface
[
'typestr'
])]
a
=
asarray
(
DummyArray
(
aiface
,
base
=
bchild_z0
))
# restore full dtype - it should not raise here, since itemsize is the same
a
.
dtype
=
self
.
dtype
a
=
_as_strided
(
bchild_z0
,
tuple
(
self
.
shape
),
tuple
(
self
.
stridev
),
self
.
dtype
)
# restore full array type
a
=
a
.
view
(
type
=
self
.
atype
)
...
...
lib/xnumpy.py
View file @
c4b66f7d
...
...
@@ -23,45 +23,80 @@ from numpy.lib import stride_tricks as npst
# XXX move ArrayRef here.
# _as_strided is similar to numpy.lib.stride_tricks.as_strided, but allows to
# set all shape/stridev/dtype in one go.
#
# It must be used with extreme care, because if there is math error in the
# arguments, the resulting array can cover wrong memory. Bugs here thus can
# lead to mysterious crashes.
def
_as_strided
(
a
,
shape
,
stridev
,
dtype
):
# the code below is very close to
#
# a = stride_tricks.as_strided(a, shape=shape, strides=stridev)
#
# but we don't use as_strided() because we also have to change dtype
# with shape and strides in one go - else changing dtype after either
# via a.dtype = ..., or via a.view(dtype=...) can raise errors like
#
# "When changing to a larger dtype, its size must be a
# divisor of the total size in bytes of the last axis
# of the array."
aiface
=
dict
(
a
.
__array_interface__
)
aiface
[
'shape'
]
=
shape
aiface
[
'strides'
]
=
stridev
# type: for now we only care that itemsize is the same
aiface
[
'typestr'
]
=
'|V%d'
%
dtype
.
itemsize
aiface
[
'descr'
]
=
[(
''
,
aiface
[
'typestr'
])]
a
=
np
.
asarray
(
npst
.
DummyArray
(
aiface
,
base
=
a
))
# restore full dtype - it should not raise here, since itemsize is the same
a
.
dtype
=
dtype
# XXX restore full array type?
# we are done
return
a
# restructure creates view of the array interpreting its minor axis as fully covered by dtype.
#
# The minor axis of the array must be C-contiguous and be
fully covered by dtyp
e in size.
# The minor axis of the array must be C-contiguous and be
of dtype.itemsiz
e in size.
#
# Restructure is similar to arr.view(dtype) + corresponding reshape, but does
# not have limitations of ndarray.view(). For example:
#
# In [1]: a = np.arange(3*3, dtype=np.int32).reshape((3,3))
#
In [1]: a = np.arange(3*3, dtype=np.int32).reshape((3,3))
#
# In [2]: a
# Out[2]:
# array([[0, 1, 2],
# [3, 4, 5],
# [6, 7, 8]], dtype=int32)
#
In [2]: a
#
Out[2]:
#
array([[0, 1, 2],
#
[3, 4, 5],
#
[6, 7, 8]], dtype=int32)
#
# In [3]: b = a[:2,:2]
#
In [3]: b = a[:2,:2]
#
# In [4]: b
# Out[4]:
# array([[0, 1],
# [3, 4]], dtype=int32)
#
In [4]: b
#
Out[4]:
#
array([[0, 1],
#
[3, 4]], dtype=int32)
#
# In [5]: dtxy = np.dtype([('x', np.int32), ('y', np.int32)])
#
In [5]: dtxy = np.dtype([('x', np.int32), ('y', np.int32)])
#
# In [6]: dtxy
# Out[6]: dtype([('x', '<i4'), ('y', '<i4')])
#
In [6]: dtxy
#
Out[6]: dtype([('x', '<i4'), ('y', '<i4')])
# In [7]: b.view(dtxy)
# ---------------------------------------------------------------------------
# ValueError Traceback (most recent call last)
# <ipython-input-66-af98529aa150> in <module>()
# ----> 1 b.view(dtxy)
#
In [7]: b.view(dtxy)
#
---------------------------------------------------------------------------
#
ValueError Traceback (most recent call last)
#
<ipython-input-66-af98529aa150> in <module>()
#
----> 1 b.view(dtxy)
#
# ValueError: To change to a dtype of a different size, the array must be C-contiguous
#
ValueError: To change to a dtype of a different size, the array must be C-contiguous
#
# In [8]: restructure(b, dtxy)
# Out[8]: array([(0, 1), (3, 4)], dtype=[('x', '<i4'), ('y', '<i4')])
#
In [8]: restructure(b, dtxy)
#
Out[8]: array([(0, 1), (3, 4)], dtype=[('x', '<i4'), ('y', '<i4')])
#
#
r
estructure always creates view and never copies data.
#
R
estructure always creates view and never copies data.
def
restructure
(
arr
,
dtype
):
dtype
=
np
.
dtype
(
dtype
)
# convenience
...
...
@@ -84,22 +119,10 @@ def restructure(arr, dtype):
shape
=
arr
.
shape
[:
maxis
]
+
arr
.
shape
[
maxis
+
1
:]
stridev
=
arr
.
strides
[:
maxis
]
+
arr
.
strides
[
maxis
+
1
:]
# NOTE cannot use just np.ndarray because if arr is a slice it can give:
# NOTE
we
cannot use just np.ndarray because if arr is a slice it can give:
# TypeError: expected a single-segment buffer object
#return np.ndarray.__new__(type(arr), shape, dtype, buffer(arr), 0, stridev)
# XXX dup from ArrayRef
aiface
=
dict
(
arr
.
__array_interface__
)
aiface
[
'shape'
]
=
shape
aiface
[
'strides'
]
=
stridev
# type: for now we only care that itemsize is the same
aiface
[
'typestr'
]
=
'|V%d'
%
dtype
.
itemsize
aiface
[
'descr'
]
=
[(
''
,
aiface
[
'typestr'
])]
a
=
np
.
asarray
(
npst
.
DummyArray
(
aiface
,
base
=
arr
))
# restore full dtype - it should not raise here, since itemsize is the same
a
.
dtype
=
dtype
a
=
_as_strided
(
arr
,
shape
,
stridev
,
dtype
)
# restore full array type
a
=
a
.
view
(
type
=
type
(
arr
))
...
...
Write
Preview
Markdown
is supported
0%
Try again
or
attach a new file
Attach a file
Cancel
You are about to add
0
people
to the discussion. Proceed with caution.
Finish editing this message first!
Cancel
Please
register
or
sign in
to comment